Research Article
YASSPP: Better kernels and coding schemes lead to improvements in protein secondary structure prediction
Article first published online: 8 JUN 2006
DOI: 10.1002/prot.21036
Copyright © 2006 Wiley-Liss, Inc.
Issue
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Proteins: Structure, Function, and Bioinformatics
Volume 64, Issue 3, pages 575–586, 15 August 2006
Additional Information
How to Cite
Karypis, G. (2006), YASSPP: Better kernels and coding schemes lead to improvements in protein secondary structure prediction. Proteins: Structure, Function, and Bioinformatics, 64: 575–586. doi: 10.1002/prot.21036
Publication History
- Issue published online: 7 JUL 2006
- Article first published online: 8 JUN 2006
- Manuscript Revised: 7 MAR 2006
- Manuscript Accepted: 7 MAR 2006
- Manuscript Received: 17 JAN 2006
Funded by
- NSF. Grant Numbers: EIA-9986042, ACI-9982274, ACI-0133464, ACI-0312828, IIS-0431135
- Army High Performance Computing Research Center. Grant Number: DAAD19-01-2-0014
- Digital Technology Center at the University of Minnesota
- Abstract
- Article
- References
- Cited By
Keywords:
- structural bioinformaticsl;
- proteins;
- machine learning;
- support vector machines
Abstract
The accurate prediction of a protein's secondary structure plays an increasingly critical role in predicting its function and tertiary structure, as it is utilized by many of the current state-of-the-art methods for remote homology, fold recognition, and ab initio structure prediction. We developed a new secondary structure prediction algorithm called YASSPP, which uses a pair of cascaded models constructed from two sets of binary SVM-based models. YASSPP uses an input coding scheme that combines both position-specific and nonposition-specific information, utilizes a kernel function designed to capture the sequence conservation signals around the local window of each residue, and constructs a second-level model by incorporating both the three-state predictions produced by the first-level model and information about the original sequence. Experiments on three standard datasets (RS126, CB513, and EVA common subset 4) show that YASSPP is capable of producing the highest Q3 and SOV scores than that achieved by existing widely used schemes such as PSIPRED, SSPro 4.0, SAM-T99sec, as well as previously developed SVM-based schemes. On the EVA dataset it achieves a Q3 and SOV score of 79.34 and 78.65%, which are considerably higher than the best reported scores of 77.64 and 76.05%, respectively. Proteins 2006. © 2006 Wiley-Liss, Inc.

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